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首页> 外文期刊>Journal of The Institution of Engineers (India): Series B >Segmentation of Brain Lesions in MRI and CT Scan Images: A Hybrid Approach Using k-Means Clustering and Image Morphology
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Segmentation of Brain Lesions in MRI and CT Scan Images: A Hybrid Approach Using k-Means Clustering and Image Morphology

机译:MRI和CT扫描图像中脑部病变的分割:使用k均值聚类和图像形态的混合方法

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摘要

Abstract Manual segmentation and analysis of lesions in medical images is time consuming and subjected to human errors. Automated segmentation has thus gained significant attention in recent years. This article presents a hybrid approach for brain lesion segmentation in different imaging modalities by combining median filter, k means clustering, Sobel edge detection and morphological operations. Median filter is an essential pre-processing step and is used to remove impulsive noise from the acquired brain images followed by k-means segmentation, Sobel edge detection and morphological processing. The performance of proposed automated system is tested on standard datasets using performance measures such as segmentation accuracy and execution time. The proposed method achieves a high accuracy of 94% when compared with manual delineation performed by an expert radiologist. Furthermore, the statistical significance test between lesion segmented using automated approach and that by expert delineation using ANOVA and correlation coefficient achieved high significance values of 0.986 and 1 respectively. The experimental results obtained are discussed in lieu of some recently reported studies.
机译:摘要人工分割和分析医学图像中的病变非常耗时,而且容易受到人为错误的影响。近年来,自动分割已引起了广泛的关注。本文结合中值滤波器,k均值聚类,Sobel边缘检测和形态学运算,提出了一种在不同成像方式下脑病变分割的混合方法。中值滤波器是必不可少的预处理步骤,用于从采集的大脑图像中去除脉冲噪声,然后进行k均值分割,Sobel边缘检测和形态处理。使用诸如分段精度和执行时间之类的性能指标,在标准数据集上测试了建议的自动化系统的性能。与由专业放射科医生进行的手动描绘相比,该方法可达到94%的高精度。此外,使用自动方法分割的病变与使用ANOVA和相关系数进行专家划分的病变之间的统计学显着性检验分别达到0.986和1的高显着性值。讨论了获得的实验结果,代替了一些最近报道的研究。

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